Generalized few-shot object detection aims to achieve precise detection on both base classes with abundant annotations and novel classes with limited training data. Existing approaches enhance few-shot generalization with the sacrifice of base-class performance, or maintain high precision in base-class detection with limited improvement in novel-class adaptation. In this paper, we point out the reason is insufficient Discriminative feature learning for all of the classes. As such, we propose a new training framework, DiGeo, to learn Geometry-aware features of inter-class separation and intra-class compactness. To guide the separation of feature clusters, we derive an offline simplex equiangular tight frame (ETF) classifier whose weights serve as class centers and are maximally and equally separated. To tighten the cluster for each class, we include adaptive class-specific margins into the classification loss and encourage the features close to the class centers. Experimental studies on two few-shot benchmark datasets (VOC, COCO) and one long-tail dataset (LVIS) demonstrate that, with a single model, our method can effectively improve generalization on novel classes without hurting the detection of base classes.
翻译:广义少样本目标检测旨在实现在具有丰富注释的基础类和具有有限训练数据的新颖类之间的精确检测。现有方法通过牺牲基础类性能来增强少样本推广能力,或者在基础类检测中保持高精度,但在新颖类适应性方面有限的提高。本文指出原因是所有类别的判别式特征学习不足。因此,我们提出了一个新的训练框架DiGeo,以学习判别式的几何感知特征,用于类别间隔和类内紧凑度。为了引导特征聚类的分离,我们导出了一个离线的等角紧框(ETF)分类器,其权重充当类中心并最大同时等距地分离。为了收紧每个类的聚类,我们将自适应类特定边距包括到分类损失中并鼓励接近类中心的特征。在两个少样本基准数据集(VOC、COCO)和一个长尾数据集(LVIS)上进行的实验研究表明,我们的方法可以有效地提高新颖类别的推广,而不伤及基础类的检测,在单个模型中完成。